0000000001038532

AUTHOR

Thomas Blaschke

0000-0002-1860-8458

showing 1 related works from this author

Assessing and mapping multi-hazard risk susceptibility using a machine learning technique

2020

AbstractThe aim of the current study was to suggest a multi-hazard probability assessment in Fars Province, Shiraz City, and its four strategic watersheds. At first, we construct maps depicting the most effective factors on floods (12 factors), forest fires (10 factors), and landslides (10 factors), and used the Boruta algorithm to prioritize the impact of each respective factor on the occurrence of each hazard. Subsequently, flood, landslides, and forest fire susceptibility maps prepared using a Random Forest (RF) model in the R statistical software. Results indicate that 42.83% of the study area are not susceptible to any hazards, while 2.67% of the area is at risk of all three hazards. T…

MultidisciplinaryWatershed010504 meteorology & atmospheric sciencesFlood mythGini coefficientScienceFlooding (psychology)QNatural hazardsRLandslide010501 environmental sciences01 natural sciencesHazardArticleRandom forestMulti hazard13. Climate actionEnvironmental scienceMedicineHydrologyCartography0105 earth and related environmental sciencesScientific Reports
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